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Consider the following plot, courtesy of this page:cal

Regarding the $y$-axis, how does this "expected return" relate to the "instantaneous expected return" in a geometric Brownian motion (GBM)?

E.g., assume each stock price follows $dS(t) = \mu S(t) dt + \sigma S(t) dW(t)$, and so $S(t) = S(0)\exp\left(\left(\mu - \frac{\sigma^2}{2}\right)t + \sigma \sqrt{t} Z\right)$ where $Z \sim \mathcal{N}(0,1)$. Then I would calculate the (annual) expected return as $$ \mathrm{E}\left[\frac{S(1)}{S(0)} - 1\right] = \mathrm{E}\left[\exp\left(\mu - \frac{\sigma^2}{2} + \sigma Z\right)\right] - 1 = \exp\left(\mu - \frac{\sigma^2}{2} + \frac{\sigma^2}{2}\right) - 1 = e^\mu - 1, $$ where the second equality is from the moment-generating function of a normal random variable.

Take Portfolio A in the plot and suppose it's just a single stock, driven by the GBM above with instantaneous rate of return $\mu$. Portfolio A has an "expected return" of $8\%$. So, which of the following (if any) do we mean?

  1. $e^\mu - 1 = 8\%$
  2. $\mu = 8\%$
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Suppose we have no dividends like in Black-Scholes-Merton and in your example. Expected return between time $t$ and $t+\Delta t$ is defined as $$ \mathbb{E}_t\left[R_{t+\Delta t}\right]\equiv\mathbb{E}_t\left[\frac{S_{t+\Delta t} - S_t}{S_t}\right] = \mathbb{E}_t\left[\frac{\Delta S_t}{S_t}\right] $$ You can see that, as $\Delta t \to dt$, $\mathbb{E}_t\left[\frac{\Delta S_t}{S_t}\right] \to \mathbb{E}_t\left[\frac{dS_t}{S_t}\right] = \mu dt$.

Regarding your question, $\mu$ is the instantaneous rate of return so $e^\mu - 1 = 8\%$. Alternatively, you know that rate of returns should be defined for a certain timeframe (e.g. 4% per semester, 8% per year etc…) and with some compounding method (e.g. yearly compounding, quarterly compounding etc…). $\mu$ is the annual nominal expected interest rate obtained by continuous compounding.

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